PAC-Bayesian matrix completion with a spectral scaled Student priorDownload PDF

Published: 29 Jan 2022, Last Modified: 05 May 2023AABI 2022 PosterReaders: Everyone
Keywords: matrix completion, Pac-bayesian bound, low-rank matrix, langevin monte carlo
Abstract: We study the problem of matrix completion in this paper. A spectral scaled Student prior is exploited to favour the underlying low-rank structure of the data matrix. We provide a thorough theoretical investigation for our approach through PAC-Bayesian bounds. More precisely, our PAC-Bayesian approach enjoys a minimax-optimal oracle inequality which guarantees that our method works well under model misspecification and under general sampling distribution. Interestingly, we also provide efficient gradient-based sampling im- plementations for our approach by using Langevin Monte Carlo. More specifically, we show that our algorithms are significantly faster than Gibbs sampler in this problem. To illustrate the attractive features of our inference strategy, some numerical simulations are conducted and an application to image inpainting is demonstrated.
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